Abstract
A model, based on automatically collected data, was developed for detection of subclinical mastitis. The logistic regression model was based on the following variables: milk electrical conductivity, milk production, parity, and DIM. Subclinical mastitis was defined as a minimal period of 1 wk in which the SCC was > 500 x 10(3) cells/ml. In contrast, periods were defined as healthy if the SCC was < 200 x 10(3) cells/ml. The resulting model had a sensitivity of 55% and specificity of 90% for individual milkings. For periods of 14 milkings, sensitivity was 54% and specificity 92% when the threshold for that period was > 6 electrical conductivity signals for high SCC. Based on these test characteristics, the model could be used as an initial screening tool in a herd with a high incidence of subclinical mastitis. Cows with a signal would have a higher probability of being diseased than the total population. In such herds, separation of milk from the signaled cows might be a possible management strategy to reduce the SCC in the bulk milk tank.
Original language | English |
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Pages (from-to) | 1039-49 |
Number of pages | 11 |
Journal | Journal of Dairy Science |
Volume | 78 |
Issue number | 5 |
DOIs | |
Publication status | Published - May 1995 |
Keywords
- Animals
- Cattle
- Cell Count
- Electric Conductivity
- Female
- Mastitis, Bovine/diagnosis
- Milk/cytology
- Models, Biological
- Models, Statistical
- Neural Networks, Computer
- Online Systems
- Regression Analysis
- Sensitivity and Specificity